Mitigation of spatial nonstationarity with vision transformers

L Liu, JE Santos, M Prodanović, MJ Pyrcz - Computers & Geosciences, 2023 - Elsevier
Spatial nonstationarity, the location variance of features' statistical distributions, is ubiquitous
in many natural settings. For example, in geological reservoirs rock matrix porosity varies …

Efficient subsurface modeling with sequential patch generative adversarial neural networks

W Pan, J Chen, S Mohamed, H Jo, JE Santos… - SPE Annual Technical …, 2023 - onepetro.org
Subsurface modeling is important for subsurface resource development, energy storage,
and CO2 sequestration. Many geostatistical and machine learning methods are developed …

Data Conditioning for Subsurface Models with Single-Image Generative Adversarial Network (SinGAN)

L Liu, E Maldonado-Cruz, H Jo, M Prodanović… - arXiv preprint arXiv …, 2024 - arxiv.org
The characterization of subsurface models relies on the accuracy of subsurface models
which request integrating a large number of information across different sources through …

Introduction to Special Issue: Geoscience Data Analytics and Machine Learning

MJ Pyrcz - AAPG Bulletin, 2022 - archives.datapages.com
A digital revolution is underway in all sectors of our economy (Gurumurthy and Schatsky,
2019), posing unique challenges and opportunities for science and engineering research …

Exemplar-Guided Sedimentary Facies Modeling for Bridging Pattern Controllability Gap

C Wu, F Hu, D Sun, L Zhang, L Wang, H Zhang - Petrophysics, 2023 - onepetro.org
Inferring subsurface structure from sparse log data is crucial for geology. Recently, deep-
learning-based methods, which provide sufficient prior knowledge from training sets, have …

Deep learning for spatial nonstationarity: evaluation, mitigation, and generation

L Liu - 2024 - repositories.lib.utexas.edu
Spatial nonstationarity, the location variance of features' statistical distributions, is ubiquitous
in many natural settings. While the advent of deep learning technologies has enabled new …

Subsurface Image Morphing Operator Using Deep Learning Techniques

CS Chen, D Datta, A Chandran, M Gupta… - Offshore Technology …, 2023 - onepetro.org
Velocity uncertainty is one of the major challenges for subsurface imaging in oil & gas
exploration. A surrogate migration engine based on image morphing operation can …

Reservoir Facies Modeling Based on Generative Adversarial Network

S Lin, S Yin, Y Zhang, J Liu… - … Conference on New …, 2024 - ieeexplore.ieee.org
Three-dimensional geological modeling of reservoirs is of great significance for developing
oil and gas resources, groundwater resources, and carbon dioxide geological storage …

이산화탄소지중저장을위한기계학습기반4-D 탄성파자료통합및배사구조채널대수층특성화

김현민, 김남화, 신현돈, 조홍근 - 한국자원공학회지, 2024 - dbpia.co.kr
본 연구에서는 채널대수층의 이산화탄소 지중저장에서 4-D 탄성파자료를 통합해 불확실성을
정량화하고 신뢰도를 향상하기 위해 기계학습의 하나인 Pix2Pix 기반의 4-D 탄성파자료 …

[引用][C] Machine Learning-based 4-D Seismic Data Integration and Characterization of Channelized Anticline Aquifer for Geological Carbon Sequestration

H Kim, N Kim, H Shin, H Jo - Journal of the …, 2024 - The Korean Society Of Mineral And …